An empirical Bayes approach to contextual region classification

S. Lazebnik, M. Raginsky
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引用次数: 27

Abstract

This paper presents a nonparametric approach to labeling of local image regions that is inspired by recent developments in information-theoretic denoising. The chief novelty of this approach rests in its ability to derive an unsupervised contextual prior over image classes from unlabeled test data. Labeled training data is needed only to learn a local appearance model for image patches (although additional supervisory information can optionally be incorporated when it is available). Instead of assuming a parametric prior such as a Markov random field for the class labels, the proposed approach uses the empirical Bayes technique of statistical inversion to recover a contextual model directly from the test data, either as a spatially varying or as a globally constant prior distribution over the classes in the image. Results on two challenging datasets convincingly demonstrate that useful contextual information can indeed be learned from unlabeled data.
上下文区域分类的经验贝叶斯方法
本文提出了一种局部图像区域标记的非参数方法,该方法受信息理论去噪的最新发展的启发。这种方法的主要新颖之处在于它能够从未标记的测试数据中获得图像类的无监督上下文先验。只有在学习图像补丁的局部外观模型时才需要标记的训练数据(尽管在可用的情况下可以选择性地加入额外的监督信息)。该方法没有假设一个参数先验,例如类标签的马尔可夫随机场,而是使用统计反演的经验贝叶斯技术直接从测试数据中恢复上下文模型,无论是作为空间变化的还是作为图像中类的全局恒定先验分布。两个具有挑战性的数据集的结果令人信服地表明,有用的上下文信息确实可以从未标记的数据中学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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